Title of article :
Applying spatial distribution analysis techniques to classification of 3D medical images
Author/Authors :
Pokrajac، نويسنده , , Dragoljub and Megalooikonomou، نويسنده , , Vasileios and Lazarevic، نويسنده , , Aleksandar and Kontos، نويسنده , , Despina and Obradovic، نويسنده , , Zoran، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Pages :
20
From page :
261
To page :
280
Abstract :
SummaryObjective: jective of this paper is to classify 3D medical images by analyzing spatial distributions to model and characterize the arrangement of the regions of interest (ROIs) in 3D space. s and material: thods are proposed for facilitating such classification. The first method uses measures of similarity, such as the Mahalanobis distance and the Kullback–Leibler (KL) divergence, to compute the difference between spatial probability distributions of ROIs in an image of a new subject and each of the considered classes represented by historical data (e.g., normal versus disease class). A new subject is predicted to belong to the class corresponding to the most similar dataset. The second method employs the maximum likelihood (ML) principle to predict the class that most likely produced the dataset of the new subject. s: oposed methods have been experimentally evaluated on three datasets: synthetic data (mixtures of Gaussian distributions), realistic lesion-deficit data (generated by a simulator conforming to a clinical study), and functional MRI activation data obtained from a study designed to explore neuroanatomical correlates of semantic processing in Alzheimerʹs disease (AD). sion: med experiments demonstrated that the approaches based on the KL divergence and the ML method provide superior accuracy compared to the Mahalanobis distance. The later technique could still be a method of choice when the distributions differ significantly, since it is faster and less complex. The obtained classification accuracy with errors smaller than 1% supports that useful diagnosis assistance could be achieved assuming sufficiently informative historic data and sufficient information on the new subject.
Keywords :
Classification , regions of interest , Medical images , Similarity measures , probability distributions , spatial data mining
Journal title :
Artificial Intelligence In Medicine
Serial Year :
2005
Journal title :
Artificial Intelligence In Medicine
Record number :
1836267
Link To Document :
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